Abstract Background To understand the molecular mechanisms underlying important biological processes, a detailed description of the gene products networks involved is required. In order to define and understand such molecular networks, some statistical methods are proposed in the literature to estimate gene regulatory networks from time-series microarray data. However, several problems still need to be overcome. Firstly, information flow need to be inferred, in addition to the correlation between genes. Secondly, we usually try to identify large networks from a large number of genes (parameters) originating from a smaller number of microarray experiments (samples). Due to this situation, which ...
Abstract: The complexity of biological systems is encoded in gene regulatory networks. Unravelling t...
Background: Causal networks based on the vector autoregressive (VAR) process are a promising statist...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
Abstract Background To understand the molecular mecha...
Abstract Background Biological networks are constantly subjected to random perturbations, and effici...
Recently, nonlinear vector autoregressive (NVAR) model based on Granger causality was proposed to in...
Microarray technologies and related methods coupled with appropriate mathematical and statistical mo...
Understanding the organization and function of transcriptional regulatory networks by analyzing high...
<div><p>Integrating genetic perturbations with gene expression data not only improves accuracy of re...
Understanding the organization and function of transcriptional regulatory networks by analyzing high...
Gene regulatory networks represent an abstract mapping of gene regulations in living cells. They aim...
Identifying gene regulatory networks (GRNs) which consist of a large number of interacting units has...
The construction of genetic regulatory networks from time series gene expression data is an importan...
International audienceReconstructing gene regulatory networks from high-throughput measurements repr...
Biological networks have arisen as an attractive paradigm of genomic science ever since the introduc...
Abstract: The complexity of biological systems is encoded in gene regulatory networks. Unravelling t...
Background: Causal networks based on the vector autoregressive (VAR) process are a promising statist...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
Abstract Background To understand the molecular mecha...
Abstract Background Biological networks are constantly subjected to random perturbations, and effici...
Recently, nonlinear vector autoregressive (NVAR) model based on Granger causality was proposed to in...
Microarray technologies and related methods coupled with appropriate mathematical and statistical mo...
Understanding the organization and function of transcriptional regulatory networks by analyzing high...
<div><p>Integrating genetic perturbations with gene expression data not only improves accuracy of re...
Understanding the organization and function of transcriptional regulatory networks by analyzing high...
Gene regulatory networks represent an abstract mapping of gene regulations in living cells. They aim...
Identifying gene regulatory networks (GRNs) which consist of a large number of interacting units has...
The construction of genetic regulatory networks from time series gene expression data is an importan...
International audienceReconstructing gene regulatory networks from high-throughput measurements repr...
Biological networks have arisen as an attractive paradigm of genomic science ever since the introduc...
Abstract: The complexity of biological systems is encoded in gene regulatory networks. Unravelling t...
Background: Causal networks based on the vector autoregressive (VAR) process are a promising statist...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...